| Literature DB >> 33803770 |
Aggelos Tsaligopoulos1, Stella Kyvelou2, Nefta-Eleftheria Votsi3, Aimilia Karapostoli4, Chris Economou1, Yiannis G Matsinos1.
Abstract
There is plenty of proof that environmental noise is a major pollutant in the urban environment. Several approaches were successfully applied for its calculation, visualization, prediction and mitigation. The goal of all strategy plans regards its reduction and the creation of quietness. This study aims to revisit the concept of quietness in the urban environment and attempts to portray a new understanding of the specific phenomena. "Quietness" as a term retains an ambiguity, and so far, it can be described as the lack of something, meaning the lack of noise that is portrayed by means of intensity. Several studies describe quietness as the combination of perceptual soundscape elements and contextual factors that can be quantified, combined, weighed and used as indicators of healthy soundscapes. In this research, the focus is on setting aside all indicators, either measuring the intensity or contextual ones and use solely quantifiable metrics regarding the acoustic environment, thus introducing a new composite index called the composite urban quietness index (CUQI). After testing the CUQI, in order to verify the results of previous research regarding the identification of quiet Areas in the city of Mytilene (Lesbos Island, Greece), the study concludes that CUQI is efficiently functioning even in this early stage of development.Entities:
Keywords: acoustic environment; composite index; environmental noise; quietness; soundscape; urban quiet
Year: 2021 PMID: 33803770 PMCID: PMC8003311 DOI: 10.3390/ijerph18063151
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The correlation matrix highlighting several negative correlations and several positive correlations represented in dashed border lines.
Figure 2Scree plot indicating the number of factors to be extracted.
Figure 3Component plot in rotated space.
Figure 4Regression standardized predicted value of acoustic complexity index levels of the area’s edges.
Scheme 1A hypothetical orthogonally shaped area indicating the 8 sampling points at the edges and the one at its core.
Figure 5Potential quiet areas ranked by size measured in square meters.
Scheme 2The previous workflow chart.
Figure 6The potential quiet areas in order based on the results of the Analytical Hierarchy Process conducted (Matsinos et al., 2017).
Figure 7Ranked quiet areas using the composite urban quietness index.